Tài liệu Bài giảng Introductory Econometrics for Finance - Chapter 10 Switching models: ‘Introductory Econometrics for Finance’ © Chris Brooks 20131Chapter 10Switching models‘Introductory Econometrics for Finance’ © Chris Brooks 20132Switching Models Motivation: Episodic nature of economic and financial variables. What might cause these fundamental changes in behaviour? - Wars - Financial panics - Significant changes in government policy - Changes in market microstructure - e.g. big bang - Changes in market sentiment - Market rigidities Switches can be one-off single changes or occur frequently back and forth.‘Introductory Econometrics for Finance’ © Chris Brooks 20133Switching Behaviour: A Simple Example for One-off ChangesDealing with switching variables We could generalise ARMA models (again) to allow the series, yt to be drawn fromtwo or more different generating processes at different times. e.g. yt = 1 + 1 yt-1 + u1t before observation 500 and yt = 2 + 2 yt-1 + u2t after observation 500‘Introductory Econometrics for Finance’ © Chris Brooks 20134How do we Deci...
33 trang |
Chia sẻ: honghanh66 | Lượt xem: 588 | Lượt tải: 0
Bạn đang xem trước 20 trang mẫu tài liệu Bài giảng Introductory Econometrics for Finance - Chapter 10 Switching models, để tải tài liệu gốc về máy bạn click vào nút DOWNLOAD ở trên
‘Introductory Econometrics for Finance’ © Chris Brooks 20131Chapter 10Switching models‘Introductory Econometrics for Finance’ © Chris Brooks 20132Switching Models Motivation: Episodic nature of economic and financial variables. What might cause these fundamental changes in behaviour? - Wars - Financial panics - Significant changes in government policy - Changes in market microstructure - e.g. big bang - Changes in market sentiment - Market rigidities Switches can be one-off single changes or occur frequently back and forth.‘Introductory Econometrics for Finance’ © Chris Brooks 20133Switching Behaviour: A Simple Example for One-off ChangesDealing with switching variables We could generalise ARMA models (again) to allow the series, yt to be drawn fromtwo or more different generating processes at different times. e.g. yt = 1 + 1 yt-1 + u1t before observation 500 and yt = 2 + 2 yt-1 + u2t after observation 500‘Introductory Econometrics for Finance’ © Chris Brooks 20134How do we Decide where the Switch or Switches take Place?It may be obvious from a plot or from knowledge of the history of the series.It can be determined using a model.It may occur at fixed intervals as a result of seasonalities.A number of different approaches are available, and are described below.‘Introductory Econometrics for Finance’ © Chris Brooks 20135Seasonality in Financial MarketsIf we have quarterly or monthly or even daily data, these may have patterns in.Seasonal effects in financial markets have been widely observed and are often termed “calendar anomalies”.Examples include day-of-the-week effects, open- or close-of-market effect, January effects, or bank holiday effects.These result in statistically significantly different behaviour during some seasons compared with others.Their existence is not necessarily inconsistent with the EMH.‘Introductory Econometrics for Finance’ © Chris Brooks 20136 Constructing Dummy Variables for SeasonalityOne way to cope with this is the inclusion of dummy variables- e.g. for quarterly data, we could have 4 dummy variables: D1t = 1 in Q1 and zero otherwise D2t = 1 in Q2 and zero otherwise D3t = 1 in Q3 and zero otherwise D4t = 1 in Q4 and zero otherwiseHow many dummy variables do we need? We need one less than the “seasonality” of the data. e.g. for quarterly series, consider what happens if we use all 4 dummies‘Introductory Econometrics for Finance’ © Chris Brooks 20137Constructing Quarterly Dummy Variables D1t D2t D3t D4t Sumt 1986Q1 1 0 0 0 1 Q2 0 1 0 0 1 Q3 0 0 1 0 1 Q4 0 0 0 1 1 1987Q1 1 0 0 0 1 Q2 0 1 0 0 1 Q3 0 0 1 0 1 etc.Problem of multicollinearity so (XX)-1 does not exist.Solution is to just use 3 dummy variables plus the constant or 4 dummies and no constant.‘Introductory Econometrics for Finance’ © Chris Brooks 20138How Does the Dummy Variable Work?It works by changing the intercept. Consider the following regression: yt = 1 + 1D1t + 2D2t + 3D3t + 2x2t +... + ut So we have as the constant in the first quarter in the second quarter in the third quarter in the fourth quarter‘Introductory Econometrics for Finance’ © Chris Brooks 20139Seasonalities in South East Asian Stock ReturnsBrooks and Persand (2001) examine the evidence for a day-of-the-week effect in five Southeast Asian stock markets: South Korea, Malaysia, the Philippines, Taiwan and Thailand. The data, are on a daily close-to-close basis for all weekdays (Mondays to Fridays) falling in the period 31 December 1989 to 19 January 1996 (a total of 1581 observations). They use daily dummy variables for the day of the week effects in the regression: rt = 1D1t + 2D2t + 3D3t + 4D4t + 5D5t + utThen the coefficients can be interpreted as the average return on each day of the week.‘Introductory Econometrics for Finance’ © Chris Brooks 201310Values and Significances of Day of the Week Effects in South East Asian Stock Markets‘Introductory Econometrics for Finance’ © Chris Brooks 201311Slope Dummy VariablesAs well as or instead of intercept dummies, we could also use slope dummies:For example, this diagram depicts the use of one dummy – e.g., for bi-annual (twice yearly) or open and close data.In the latter case, we could define Dt = 1 for open observations and Dt=0 for close.Such dummies change the slope but leave the intercept unchanged.We could use more slope dummies or both intercept and slope dummies.‘Introductory Econometrics for Finance’ © Chris Brooks 201312Seasonalities in South East Asian Stock Returns RevisitedIt is possible that the different returns on different days of the week could be a result of different levels of risk on different days.To allow for this, Brooks and Persand re-estimate the model allowing for different betas on different days of the week using slope dummies: rt = ( iDit + i DitRWMt) + ut where Dit is the ith dummy variable taking the value 1 for day t=i and zero otherwise, and RWMt is the return on the world market indexNow both risk and return are allowed to vary across the days of the week. ‘Introductory Econometrics for Finance’ © Chris Brooks 201313Values and Significances of Day of the Week Effects in South East Asian Stock Markets allowing for Time-Varying risks‘Introductory Econometrics for Finance’ © Chris Brooks 201314Markov Switching ModelsMarkov switching models are a generalisation of the simple dummy variables approach described above.The universe of possible occurrences is split into m states of the world, called st, i=1,...,m.Movements of the state variable between regimes are governed by a Markov process. This Markov property can be expressed as P[a<ytb y1, y2, ..., yt-1] = P[a<ytb yt-1]If a variable follows a Markov process, all we need to forecast the probability that it will be in a given regime during the next period is the current period’s probability and a transition probability matrix:where Pij is the probability of moving from regime i to regime j. ‘Introductory Econometrics for Finance’ © Chris Brooks 201315Markov Switching Models – The Transition ProbabilitiesMarkov switching models can be rather complex, but the simplest form is known as “Hamilton’s Filter”.For example, suppose that m=2. The unobserved state variable, denoted zt, evolves according to a Markov process with the following probabilities Prob[zt = 1 zt-1 = 1] = p11 Prob[zt = 2 zt-1 = 1] = 1 - p11 Prob[zt = 2 zt-1 = 2] = p22 Prob[zt = 1 zt-1 = 2] = 1 – p22 where p11 and p22 denote the probability of being in regime one, given that the system was in regime one during the previous period, and the probability of being in regime two, given that the system was in regime two during the previous period respectively. ‘Introductory Econometrics for Finance’ © Chris Brooks 201316Markov Switching Models (cont’d)It must be true thatWe then have a vector of current state probabilities, defined as where i is the probability that we are currently in state i.Given t and P, we can forecast the probability that we will be in a given regime next period: t+1 = tPThe probabilities for S steps into the future will be given by: t+1 = tPsThe Markov switching approach is useful when a series is thought to undergo shifts from one type of behaviour to another and back again, but where the “forcing variable” that causes the regime shifts is unobservable. The model’s parameters can be estimated by maximum likelihood (see Engel and Hamilton, 1990).‘Introductory Econometrics for Finance’ © Chris Brooks 201317An Application of Markov Switching Models to the Real Exchange RatePurchasing power parity (PPP) theory suggests that the law of one price should always apply in the long run such that, after converting it into a common currency, the cost of a representative basket of goods and services is the same wherever it is purchased. Under some assumptions, one implication of PPP is that the real exchange rate (that is, the exchange rate divided by a general price index) should be stationary. However, a number of studies have failed to reject the unit root null hypothesis in real exchange rates, indicating evidence against PPP theory. It is widely known that the power of unit root tests is low in the presence of structural breaks as the ADF test finds it difficult to distinguish between a stationary process subject to structural breaks and a unit root process. In order to investigate this possibility, Bergman and Hansson (2005) estimate a Markov switching model with an AR(1) structure for the real exchange rate, which allows for multiple switches between two regimes. ‘Introductory Econometrics for Finance’ © Chris Brooks 201318An Application of Markov Switching Models to the Real Exchange RateThe specification they use is where yt is the real exchange rate, st (t = 1,2) are the two states and t ~ N(0, 2).The state variable, st, is assumed to follow a standard 2-regime Markov process. Quarterly observations from 1973Q2 to 1997Q4 (99 data points) are used on the real exchange rate (in units of foreign currency per US dollar) for the UK, France, Germany, Switzerland, Canada and Japan. The model is estimated using the first 72 observations (1973Q2 - 1990Q4) with the remainder retained for out of sample forecast evaluation. The authors use 100 times the log of the real exchange rate, and this is normalised to take a value of one for 1973Q2 for all countries. The Markov switching model estimates are obtained using maximum likelihood estimation.‘Introductory Econometrics for Finance’ © Chris Brooks 201319ResultsSource: Bergman and Hansson (2005)‘Introductory Econometrics for Finance’ © Chris Brooks 201320Analysis of ResultsAs the table shows, the model is able to separate the real exchange rates into two distinct regimes for each series, with the intercept in regime one (1) being positive for all countries except Japan (resulting from the phenomenal strength of the yen over the sample period), corresponding to a rise in the log of the number of units of the foreign currency per US dollar, i.e. a depreciation of the domestic currency against the dollar. 2, the intercept in regime 2, is negative for all countries, corresponding to a domestic currency appreciation against the dollar. The probabilities of remaining within the same regime during the following period (p11 and p22) are fairly low for the UK, France, Germany and Switzerland, indicating fairly frequent switches from one regime to another for those countries' currencies. Interestingly, after allowing for the switching intercepts across the regimes, the AR(1) coefficient, , is a considerable distance below unity, indicating that these real exchange rates are stationary. ‘Introductory Econometrics for Finance’ © Chris Brooks 201321So PPP Holds After All?Bergman and Hansson simulate data from the stationary Markov switching AR(1) model with the estimated parameters but they assume that the researcher conducts a standard ADF test on the artificial data. They find that for none of the cases can the unit root null hypothesis be rejected, even though clearly this null is wrong as the simulated data are stationary. It is concluded that a failure to account for time-varying intercepts (i.e. structural breaks) in previous empirical studies on real exchange rates could have been the reason for the finding that the series are unit root processes when the financial theory had suggested that they should be stationary. ‘Introductory Econometrics for Finance’ © Chris Brooks 201322Use of the Markov-Switching Model for ForecastingFinally, the authors employ their Markov switching AR(1) model for forecasting the remainder of the exchange rates in the sample in comparison with the predictions produced by a random walk and by a Markov switching model with a random walk. They find that for all six series, and for forecast horizons up to 4 steps (quarters) ahead, their Markov switching AR model produces predictions with the lowest mean squared errors; these improvements over the pure random walk are statistically significant. ‘Introductory Econometrics for Finance’ © Chris Brooks 201323An Application of Markov Switching Models to the Gilt-Equity Yield RatioThe gilt-equity yield ratio (GEYR) is defined as the ratio of the income yield on long-term government bonds to the dividend yield on equities. It has been suggested that the current value of the GEYR might be a useful tool for investment managers or market analystsThe GEYR is assumed to have a long-run equilibrium level, deviations from which are taken to signal that equity prices are at an unsustainable level.Thus, in its crudest form, an equity trading rule based on the GEYR would say, “if the GEYR is low, buy equities; if the GEYR is high, sell equities.” Brooks and Persand (2001) employ monthly stock index dividend yields and income yields on government bonds covering the period January 1975 until August 1997 (272 observations) for three countries - the UK, the US, and Germany. ‘Introductory Econometrics for Finance’ © Chris Brooks 201324Time Series Plots of the GEYR‘Introductory Econometrics for Finance’ © Chris Brooks 201325The Distribution of US GEYR The distribution looks as if it could usefully be spilt into two parts‘Introductory Econometrics for Finance’ © Chris Brooks 201326Estimated Parameters for Markov Switching ModelsNotes: Standard errors in parentheses; N1 and N2 denote the number of observationsdeemed to be in regimes 1 and 2 respectively. ‘Introductory Econometrics for Finance’ © Chris Brooks 201327Analysis of ResultsIt is clear that the regime switching model has split the data into two distinct samples - one with a high mean (of 2.43, 2.46 and 3.03 for the UK, US and Germany, respectively) and one with a lower mean (of 2.07, 2.12, and 2.16).Also apparent is the fact that the UK and German GEYR are more variable at times when it is in the high mean regime, evidenced by their higher variance (in fact, it is around four and 20 times higher than for the low GEYR state, respectively). The number of observations for which the probability that the GEYR is in the high mean state exceeds 0.5 (and thus when the GEYR is actually deemed to be in this state) is 102 for the UK (37.5% of the total), while the figures for the US are 100 (36.8%) and for Germany 200 (73.5%). Thus, overall, the GEYR is more likely to be in the low mean regime for the UK and US, while it is likely to be high in Germany. ‘Introductory Econometrics for Finance’ © Chris Brooks 201328Analysis of ResultsThe table also shows the probability of staying in state 1 given that the GEYR was in state 1 in the immediately preceding month, and the probability of staying in state 2 given that the GEYR was in state 2 previously. The high values of these parameters indicates that the regimes are highly stable with less than a 10% chance of moving from a low GEYR to a high GEYR regime and vice versa for all three series. ‘Introductory Econometrics for Finance’ © Chris Brooks 201329Conclusions from the GEYR ApplicationThe Markov switching approach can be used to model the gilt-equity yield ratio.The resulting model can be used to produce forecasts of the probability that the GEYR will be in a particular regime. Before transactions costs, a trading rule derived from the model produces a better performance than a buy-and-hold equities strategy, in spite of inferior predictive accuracy as measured statistically.Net of transactions costs, rules based on the Markov switching model are not able to beat a passive investment in the index for any of the three countries studied.‘Introductory Econometrics for Finance’ © Chris Brooks 201330Threshold Autoregressive (TAR) Models Intuition: a variable is specified to follow different autoregressive processes in different regimes, with movements between regimes governed by an observed variable.The model isBut what is st-k? It is the state determining variable and it can be any variable which is thought to make yt shift from one regime to another.If k = 0, it is the current value of the state-determining variable that influences the regime that y is in at time t.The simplest case is where st-k = yt-k we then have a self-exciting TAR, or a SETAR. The model is We could of course have more than one lag in each regime (and the number of lags in each need not be the same).Under the TAR model approach, unlike the Markov switching model, the transitions between regimes are discrete.‘Introductory Econometrics for Finance’ © Chris Brooks 201331Threshold Models: Estimation IssuesEstimation of parameters in the context of threshold models is complex. Quantities to be determined include the number of regimes, the threshold variable, the threshold variable lag, the model order in each regime, the value of the threshold, and the coefficients for each regime.We cannot estimate all of these at the same time, so some are usually specified a priori based on theory or intuition and the others estimated conditional upon them. E.g., set k = 1, J = 2, r may not require estimation, etc.The lag length for each regime can be determined using an information criterion conditional upon a specified threshold variable and fixed threshold value. For example Tong (1990) proposes a modified version of AIC: where T1 and T2 are the number of observations in regimes 1 and 2 respectively, p1 and p2 are the lag lengths, and and are the residual variances. Estimation of the autoregressive coefficients can then be achieved using nonlinear least squares (NLS). ‘Introductory Econometrics for Finance’ © Chris Brooks 201332An Example of a SETAR Model for the French franc / German mark Exchange RateFrom Chappell et al., 1996, Journal of ForecastingThe study used daily data from 1/5/90 - 30 / 3/ 92.Both the FRF & DEM were then in the ERM which allowed for “managed floating”.Can use a SETAR to allow for different types of behaviour according to whether the exchange rate is close to the ERM boundary. Currencies are allowed to move up to 2.25% either side of their central parity in the ERM.This would suggest the use of the 2-threshold (3-state) SETAR. This did not work as the DEM was never a weak currency then.The model orders for each regime are determined using AICCeiling in the ERM corresponded to 5.8376 (log of FRF per 100 DEM).The first 450 observations are used for model estimation, with the remaining 50 being retained for out of sample forecasting.Forecasts are then produced using the threshold model, the SETAR model with 2 thresholds, a random walk and an AR(2)‘Introductory Econometrics for Finance’ © Chris Brooks 201333Estimated FRF-DEM Regime Switching Model and Out of Sample Forecast Accuracies
Các file đính kèm theo tài liệu này:
- ch10_slides_528.ppt